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Main Authors: Jhang, Seongsu, Yoo, Donghwi, Kown, Jaeyong
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.09094
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author Jhang, Seongsu
Yoo, Donghwi
Kown, Jaeyong
author_facet Jhang, Seongsu
Yoo, Donghwi
Kown, Jaeyong
contents Recently, services and business models based on large language models, such as OpenAI Chatgpt, Google BARD, and Microsoft copilot, have been introduced, and the applications utilizing natural language processing with deep learning are increasing, and it is one of the natural language preprocessing methods. Conversion to machine language through tokenization and processing of unstructured data are increasing. Although algorithms that can understand and apply human language are becoming increasingly sophisticated, it is difficult to apply them to processes that rely on human emotions and senses in industries that still mainly deal with standardized data. In particular, in processes where brightness, saturation, and color information are essential, such as painting and injection molding, most small and medium-sized companies, excluding large corporations, rely on the tacit knowledge and sensibility of color mixers, and even customer companies often present non-standardized requirements. . In this paper, we proposed TENN to infer color recipe based on unstructured data with emotional natural language, and demonstrated it.
format Preprint
id arxiv_https___arxiv_org_abs_2408_09094
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Research on color recipe recommendation based on unstructured data using TENN
Jhang, Seongsu
Yoo, Donghwi
Kown, Jaeyong
Artificial Intelligence
Recently, services and business models based on large language models, such as OpenAI Chatgpt, Google BARD, and Microsoft copilot, have been introduced, and the applications utilizing natural language processing with deep learning are increasing, and it is one of the natural language preprocessing methods. Conversion to machine language through tokenization and processing of unstructured data are increasing. Although algorithms that can understand and apply human language are becoming increasingly sophisticated, it is difficult to apply them to processes that rely on human emotions and senses in industries that still mainly deal with standardized data. In particular, in processes where brightness, saturation, and color information are essential, such as painting and injection molding, most small and medium-sized companies, excluding large corporations, rely on the tacit knowledge and sensibility of color mixers, and even customer companies often present non-standardized requirements. . In this paper, we proposed TENN to infer color recipe based on unstructured data with emotional natural language, and demonstrated it.
title Research on color recipe recommendation based on unstructured data using TENN
topic Artificial Intelligence
url https://arxiv.org/abs/2408.09094